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Biomedical Imaging Modality Classification Using Combined Visual Features and Textual Terms

机译:使用结合的视觉特征和文本术语的生物医学成像模式分类

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We describe an approach for the automatic modality classification in medical image retrieval task of the 2010 CLEF cross-language image retrieval campaign (ImageCLEF). This paper is focused on the process of featureextraction from medical images and fuses the different extracted visual features and textual feature for modality classification. To extract visual features from the images, we used histogram descriptor of edge, gray, or color intensity and block-based variation as global features and SIFT histogram as local feature. For textual feature of image representation, the binary histogram of some predefined vocabulary words from image captions is used. Then, we combine the different features using normalized kernel functions for SVM classification. Furthermore, for some easy misclassified modality pairs such as CT and MR or PET and NM modalities, a local classifier is used for distinguishing samples in the pair modality to improve performance. The proposed strategy is evaluated with the provided modality dataset by ImageCLEF 2010.
机译:我们描述了一种在2010 CLEF跨语言图像检索运动(ImageCLEF)的医学图像检索任务中进行自动模式分类的方法。本文着重于从医学图像中提取特征的过程,并将不同提取的视觉特征和文本特征融合在一起,以进行模式分类。为了从图像中提取视觉特征,我们使用边缘,灰度或颜色强度的直方图描述符以及基于块的变化作为全局特征,而将SIFT直方图用作局部特征。对于图像表示的文本特征,使用了来自图像标题的一些预定义词汇词的二进制直方图。然后,我们使用归一化内核函数对SVM分类进行组合,以组合不同的功能。此外,对于一些容易错误分类的模态对,例如CT和MR或PET和NM模态,使用局部分类器来区分对模态中的样本以提高性能。 ImageCLEF 2010使用提供的模态数据集对提出的策略进行了评估。

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